Personalized Face Super-Resolution with Identity Decoupling and Fitting
Jiarui Yang, Hang Guo, Wen Huang, Tao Dai, Shutao Xia

TL;DR
This paper introduces a novel face super-resolution method that enhances identity preservation and reduces hallucinations under extreme degradation by decoupling style and ID information and fine-tuning personalized embeddings.
Contribution
The proposed IDFSR method uniquely combines identity decoupling, style guidance, and personalized embedding fine-tuning to improve face super-resolution at large scales.
Findings
Outperforms existing methods in ID consistency under extreme degradation
Achieves higher perceptual quality in reconstructed faces
Effectively reduces hallucination artifacts in super-resolved images
Abstract
In recent years, face super-resolution (FSR) methods have achieved remarkable progress, generally maintaining high image fidelity and identity (ID) consistency under standard settings. However, in extreme degradation scenarios (e.g., scale ), critical attributes and ID information are often severely lost in the input image, making it difficult for conventional models to reconstruct realistic and ID-consistent faces. Existing methods tend to generate hallucinated faces under such conditions, producing restored images lacking authentic ID constraints. To address this challenge, we propose a novel FSR method with Identity Decoupling and Fitting (IDFSR), designed to enhance ID restoration under large scaling factors while mitigating hallucination effects. Our approach involves three key designs: 1) \textbf{Masking} the facial region in the low-resolution (LR) image to eliminate…
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